{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [],
   "source": [
    "import numpy as np"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "import matplotlib.pyplot as plt\n",
    "xd=[1,2,3,4,5]\n",
    "yd=[1,4,9,16,25]\n",
    "plt.plot(xd,yd,linewidth=5)\n",
    "plt.title('Hello!!!',fontsize=14)\n",
    "plt.xlabel('val',fontsize=14)\n",
    "plt.ylabel('Res',fontsize=14)\n",
    "plt.tick_params(axis='both',labelsize=14)\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 16,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 432x288 with 1 Axes>"
      ]
     },
     "metadata": {
      "needs_background": "light"
     },
     "output_type": "display_data"
    }
   ],
   "source": [
    "arr=list(range(len(yd)))\n",
    "plt.scatter((1.1,2,3.3,4.4,7),yd,c=arr, cmap=plt.cm.rainbow,s=20)\n",
    "plt.title('Scatter',fontsize=18)\n",
    "plt.xlabel('X',fontsize=14)\n",
    "plt.ylabel('Y',fontsize=14)\n",
    "plt.tick_params(axis='both', which='major', labelsize=14)\n",
    "plt.show()"
   ]
  }
 ],
 "metadata": {
  "interpreter": {
   "hash": "1c836ea1838598e769062a9cf5fa60bfd2e0efc946eee0512711b4e28a236389"
  },
  "kernelspec": {
   "display_name": "Python 3.8.13 ('base')",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.8.13"
  },
  "orig_nbformat": 4
 },
 "nbformat": 4,
 "nbformat_minor": 2
}
